MapGAM - Mapping Smoothed Effect Estimates from Individual-Level Data
Contains functions for mapping odds ratios, hazard ratios,
or other effect estimates using individual-level data such as
case-control study data, using generalized additive models
(GAMs) or Cox models for smoothing with a two-dimensional
predictor (e.g., geolocation or exposure to chemical mixtures)
while adjusting linearly for confounding variables, using
methods described by Kelsall and Diggle (1998), Webster at al.
(2006), and Bai et al. (2020). Includes convenient functions
for mapping point estimates and confidence intervals, efficient
control sampling, and permutation tests for the null hypothesis
that the two-dimensional predictor is not associated with the
outcome variable (adjusting for confounders).